import pytest
from typing import *
from dataclasses import dataclass
from dataclasses_json import dataclass_json
from marshmallow import ValidationError


# == Common use cases ==
@dataclass_json
@dataclass
class C1:
    f1: Union[int, str]


@dataclass_json
@dataclass
class C2:
    f1: Union[int, Dict[str, float]]


@dataclass_json
@dataclass
class C3:
    f1: Union[int, List[float]]


# == Use cases with nested dataclasses ==
@dataclass_json
@dataclass
class Aux1:
    f1: int


@dataclass_json
@dataclass
class Aux2:
    f1: str


@dataclass_json
@dataclass
class Aux3:
    f2: str


@dataclass_json
@dataclass
class C4:
    f1: Union[Aux1, Aux2]


@dataclass_json
@dataclass
class C12:
    f1: Union[Aux2, Aux3]


@dataclass_json
@dataclass
class C5:
    f1: Union[Aux1, Aux2, None]


@dataclass_json
@dataclass
class C6:
    f1: Union[Aux1, None]  # The same as Optional[Aux1]


@dataclass_json
@dataclass
class C7:
    f1: Union[C5, C6]


@dataclass_json
@dataclass
class C8:
    f1: Dict[str, Union[Aux1, Aux2]]


@dataclass_json
@dataclass
class C9:
    f1: List[Union[Aux1, Aux2]]


try:
    @dataclass_json
    @dataclass
    class C10:
        """
         Use py3.10+ pipe notation for optionals
         Check if passing None as the first type option doesn't break type resolution

         Instantiate with None default so NoneType is returned for runtime field value type.
        """
        f1: None | str = None
except TypeError:
    @dataclass_json
    @dataclass
    class C10:
        """
         Replace test case on versions prior to 3.10
        """
        f1: Union[None, str] = None


try:
    @dataclass_json
    @dataclass
    class C11:
        """
         Use py3.10+ pipe notation for optionals
         Check if passing None as the second type option doesn't break type resolution

         Instantiate with None default so NoneType is returned for runtime field value type.
        """
        f1: str | None = None
except TypeError:
    @dataclass_json
    @dataclass
    class C11:
        """
         Replace test case on versions prior to 3.10
        """
        f1: Union[str, None] = None


@dataclass_json
@dataclass
class C13:
    data: str


@dataclass_json
@dataclass
class C14:
    content: str


@dataclass_json
@dataclass
class C15:
    data: C13


@dataclass_json
@dataclass
class C16:
    event: Union[C15, C13]


params = [
    (C1(f1=12), {"f1": 12}, '{"f1": 12}'),
    (C1(f1="str1"), {"f1": "str1"}, '{"f1": "str1"}'),

    (C2(f1=10), {"f1": 10}, '{"f1": 10}'),
    (C2(f1={"str1": 0.12}), {"f1": {"str1": 0.12}}, '{"f1": {"str1": 0.12}}'),

    (C3(f1=10), {"f1": 10}, '{"f1": 10}'),
    (C3(f1=[0.12, 0.13, 0.14]), {"f1": [0.12, 0.13, 0.14]}, '{"f1": [0.12, 0.13, 0.14]}'),

    (C4(f1=Aux1(1)), {"f1": {"f1": 1, "__type": "Aux1"}}, '{"f1": {"f1": 1, "__type": "Aux1"}}'),
    (C4(f1=Aux2("str1")), {"f1": {"f1": "str1", "__type": "Aux2"}}, '{"f1": {"f1": "str1", "__type": "Aux2"}}'),

    (C5(f1=Aux1(1)), {"f1": {"f1": 1, "__type": "Aux1"}}, '{"f1": {"f1": 1, "__type": "Aux1"}}'),
    (C5(f1=Aux2("str1")), {"f1": {"f1": "str1", "__type": "Aux2"}}, '{"f1": {"f1": "str1", "__type": "Aux2"}}'),
    (C5(f1=None), {"f1": None}, '{"f1": null}'),

    (C6(f1=Aux1(1)), {"f1": {"f1": 1}}, '{"f1": {"f1": 1}}'),  # For Optionals, type can be clearly defined
    (C6(f1=None), {"f1": None}, '{"f1": null}'),

    (C7(C5(Aux2("str1"))),
     {"f1": {"f1": {"f1": "str1", "__type": "Aux2"}, "__type": "C5"}},
     '{"f1": {"f1": {"f1": "str1", "__type": "Aux2"}, "__type": "C5"}}'),
    (C7(C6(Aux1(12))),
     {"f1": {"f1": {"f1": 12}, "__type": "C6"}},
     '{"f1": {"f1": {"f1": 12}, "__type": "C6"}}'),

    (C8({"str1": Aux1(12), "str2": Aux2("str3")}),
     {"f1": {"str1": {"f1": 12, "__type": "Aux1"}, "str2": {"f1": "str3", "__type": "Aux2"}}},
     '{"f1": {"str1": {"f1": 12, "__type": "Aux1"}, "str2": {"f1": "str3", "__type": "Aux2"}}}'),

    (C9([Aux1(12), Aux2("str3")]),
     {"f1": [{"f1": 12, "__type": "Aux1"}, {"f1": "str3", "__type": "Aux2"}]},
     '{"f1": [{"f1": 12, "__type": "Aux1"}, {"f1": "str3", "__type": "Aux2"}]}'),

    (C10(f1=None), {"f1": None}, '{"f1": null}'),
    (C10(f1='str1'), {"f1": 'str1'}, '{"f1": "str1"}'),

    (C11(f1=None), {"f1": None}, '{"f1": null}')
]


@pytest.mark.parametrize('obj, expected, expected_json', params)
def test_serialize(obj, expected, expected_json):
    s = obj.schema()
    assert s.dump(obj) == expected
    assert s.dumps(obj) == expected_json


@pytest.mark.parametrize('expected_obj, data, data_json', params)
def test_deserialize(expected_obj, data, data_json):
    cls = type(expected_obj)
    s = cls.schema()
    assert s.load(data) == expected_obj
    assert s.loads(data_json) == expected_obj


def test_deserialize_twice():
    data = {"f1": [{"f1": 12, "__type": "Aux1"}, {"f1": "str3", "__type": "Aux2"}]}
    expected_obj = C9([Aux1(12), Aux2("str3")])

    s = C9.schema()
    res1 = s.load(data)
    res2 = s.load(data)
    assert res1 == expected_obj and res2 == expected_obj


@pytest.mark.parametrize('obj', [
    (C2(f1={"str1": "str1"})),
    (C3(f1=[0.12, 0.13, "str1"])),
])
def test_serialize_with_error(obj):
    s = obj.schema()
    with pytest.raises(ValueError):
        assert s.dump(obj)


@pytest.mark.parametrize('cls, data', [
    (C1, {"f1": None}),
])
def test_deserialize_with_error(cls, data):
    s = cls.schema()
    with pytest.raises(ValidationError):
        assert s.load(data)


def test_deserialize_without_discriminator():
    # determine based on type
    json = '{"f1": {"f1": 1}}'
    s = C4.schema()
    obj = s.loads(json)
    assert obj.f1 is not None
    assert type(obj.f1) == Aux1

    json = '{"f1": {"f1": "str1"}}'
    s = C4.schema()
    obj = s.loads(json)
    assert obj.f1 is not None
    assert type(obj.f1) == Aux2

    # determine based on field name
    json = '{"f1": {"f1": "str1"}}'
    s = C12.schema()
    obj = s.loads(json)
    assert obj.f1 is not None
    assert type(obj.f1) == Aux2
    json = '{"f1": {"f2": "str1"}}'
    s = C12.schema()
    obj = s.loads(json)
    assert obj.f1 is not None
    assert type(obj.f1) == Aux3

    # if no matching types, type should remain dict
    json = '{"f1": {"f3": "str2"}}'
    s = C12.schema()
    obj = s.loads(json)
    assert type(obj.f1) == dict


def test_deserialize_with_mismatched_field_types():
    json = '{"event": {"data": "Hello world!"} }'
    s = C16.schema()
    obj = s.loads(json)
    assert obj.event is not None
    assert obj.event.data == "Hello world!"


def test_deserialize_with_mismatched_field_types():
    json = '{"event": {"data": "Hello world!"} }'
    s = C16.schema()
    obj = s.loads(json)
    assert obj.event is not None
    assert obj.event.data == "Hello world!"
